SUMMARY: This project aims to construct a predictive model using a TensorFlow convolutional neural network (CNN) and document the end-to-end steps using a template. The Fruits and Vegetables Image Recognition dataset is a multi-class classification situation where we attempt to predict one of several (more than two) possible outcomes.
INTRODUCTION: The dataset owner collected over 4,300 pieces of fruit and vegetable images and created a dataset that includes 36 classes. The idea was to build an application that recognizes the food items from the captured photo and provides different recipes that can be made using the food items.
ANALYSIS: The ResNet50V2 model's performance achieved an accuracy score of 91.74% after 20 epochs using a separate validation dataset. After tuning the learning rate, we improved the accuracy rate to 97.15% using the same validation dataset. When we applied the model to the test dataset, the model achieved an accuracy score of 95.54%.
CONCLUSION: In this iteration, the TensorFlow ResNet50V2 CNN model appeared suitable for modeling this dataset.
Dataset ML Model: Multi-Class classification with numerical features
Dataset Used: Kritik Seth, "Fruits and Vegetables Image Recognition Dataset," Kaggle 2020
Dataset Reference: https://www.kaggle.com/datasets/kritikseth/fruit-and-vegetable-image-recognition
One source of potential performance benchmarks: https://www.kaggle.com/datasets/kritikseth/fruit-and-vegetable-image-recognition/code
# # Install the packages to support accessing environment variable and SQL databases
# !pip install python-dotenv PyMySQL boto3
# Retrieve CPU information from the system
ncpu = !nproc
print("The number of available CPUs is:", ncpu[0])
The number of available CPUs is: 12
# Retrieve memory configuration information
from psutil import virtual_memory
ram_gb = virtual_memory().total / 1e9
print('Your runtime has {:.1f} gigabytes of available RAM\n'.format(ram_gb))
Your runtime has 89.6 gigabytes of available RAM
# Retrieve GPU configuration information
gpu_info = !nvidia-smi
gpu_info = '\n'.join(gpu_info)
print(gpu_info)
Thu Apr 7 17:21:32 2022
+-----------------------------------------------------------------------------+
| NVIDIA-SMI 460.32.03 Driver Version: 460.32.03 CUDA Version: 11.2 |
|-------------------------------+----------------------+----------------------+
| GPU Name Persistence-M| Bus-Id Disp.A | Volatile Uncorr. ECC |
| Fan Temp Perf Pwr:Usage/Cap| Memory-Usage | GPU-Util Compute M. |
| | | MIG M. |
|===============================+======================+======================|
| 0 A100-SXM4-40GB Off | 00000000:00:04.0 Off | 0 |
| N/A 34C P0 45W / 400W | 0MiB / 40536MiB | 0% Default |
| | | Disabled |
+-------------------------------+----------------------+----------------------+
+-----------------------------------------------------------------------------+
| Processes: |
| GPU GI CI PID Type Process name GPU Memory |
| ID ID Usage |
|=============================================================================|
| No running processes found |
+-----------------------------------------------------------------------------+
# # Mount Google Drive locally for loading the dotenv files
# from dotenv import load_dotenv
# from google.colab import drive
# drive.mount('/content/gdrive')
# gdrivePrefix = '/content/gdrive/My Drive/Colab_Downloads/'
# env_path = '/content/gdrive/My Drive/Colab Notebooks/'
# dotenv_path = env_path + "python_script.env"
# load_dotenv(dotenv_path=dotenv_path)
# Set the random seed number for reproducible results
RNG_SEED = 888
import random
random.seed(RNG_SEED)
import numpy as np
np.random.seed(RNG_SEED)
import pandas as pd
import matplotlib.pyplot as plt
import matplotlib.image as mpimg
import os
import sys
import math
# import boto3
import zipfile
from datetime import datetime
from sklearn.metrics import classification_report
from sklearn.metrics import confusion_matrix
from sklearn.metrics import accuracy_score
import tensorflow as tf
tf.random.set_seed(RNG_SEED)
from tensorflow import keras
from tensorflow.keras.callbacks import ReduceLROnPlateau
from tensorflow.keras.preprocessing.image import ImageDataGenerator
# Begin the timer for the script processing
START_TIME_SCRIPT = datetime.now()
# Set up the number of CPU cores available for multi-thread processing
N_JOBS = 1
# Set up the flag to stop sending progress emails (setting to True will send status emails!)
NOTIFY_STATUS = False
# Set the percentage sizes for splitting the dataset
TEST_SET_RATIO = 0.2
VAL_SET_RATIO = 0.2
# Set the number of folds for cross validation
N_FOLDS = 5
N_ITERATIONS = 1
# Set various default modeling parameters
DEFAULT_LOSS = 'categorical_crossentropy'
DEFAULT_METRICS = ['accuracy']
DEFAULT_OPTIMIZER = tf.keras.optimizers.Adam(learning_rate=0.0001)
CLASSIFIER_ACTIVATION = 'softmax'
MAX_EPOCHS = 20
BATCH_SIZE = 16
NUM_CLASSES = 36
# CLASS_LABELS = []
# CLASS_NAMES = []
# RAW_IMAGE_SIZE = (250, 250)
TARGET_IMAGE_SIZE = (224, 224)
INPUT_IMAGE_SHAPE = (TARGET_IMAGE_SIZE[0], TARGET_IMAGE_SIZE[1], 3)
# Define the labels to use for graphing the data
TRAIN_METRIC = "accuracy"
VALIDATION_METRIC = "val_accuracy"
TRAIN_LOSS = "loss"
VALIDATION_LOSS = "val_loss"
# Define the directory locations and file names
STAGING_DIR = 'staging/'
TRAIN_DIR = 'staging/train/'
VALID_DIR = 'staging/validation/'
TEST_DIR = 'staging/test/'
TRAIN_DATASET = 'archive.zip'
# VALID_DATASET = ''
# TEST_DATASET = ''
# TRAIN_LABELS = ''
# VALID_LABELS = ''
# TEST_LABELS = ''
# OUTPUT_DIR = 'staging/'
# SAMPLE_SUBMISSION_CSV = 'sample_submission.csv'
# FINAL_SUBMISSION_CSV = 'submission.csv'
# Check the number of GPUs accessible through TensorFlow
print('Num GPUs Available:', len(tf.config.list_physical_devices('GPU')))
# Print out the TensorFlow version for confirmation
print('TensorFlow version:', tf.__version__)
Num GPUs Available: 1 TensorFlow version: 2.8.0
# Set up the email notification function
def status_notify(msg_text):
access_key = os.environ.get('SNS_ACCESS_KEY')
secret_key = os.environ.get('SNS_SECRET_KEY')
aws_region = os.environ.get('SNS_AWS_REGION')
topic_arn = os.environ.get('SNS_TOPIC_ARN')
if (access_key is None) or (secret_key is None) or (aws_region is None):
sys.exit("Incomplete notification setup info. Script Processing Aborted!!!")
sns = boto3.client('sns', aws_access_key_id=access_key, aws_secret_access_key=secret_key, region_name=aws_region)
response = sns.publish(TopicArn=topic_arn, Message=msg_text)
if response['ResponseMetadata']['HTTPStatusCode'] != 200 :
print('Status notification not OK with HTTP status code:', response['ResponseMetadata']['HTTPStatusCode'])
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 1 - Prepare Environment has begun on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 1 - Prepare Environment completed on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 2 - Load and Prepare Images has begun on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
# Clean up the old files and download directories before receiving new ones
!rm -rf staging/
# !rm archive.zip
!mkdir staging/
if not os.path.exists(TRAIN_DATASET):
!wget https://dainesanalytics.com/datasets/kaggle-kritikseth-fruit-vegetable-image/archive.zip
--2022-04-07 17:21:36-- https://dainesanalytics.com/datasets/kaggle-kritikseth-fruit-vegetable-image/archive.zip Resolving dainesanalytics.com (dainesanalytics.com)... 18.67.0.61, 18.67.0.27, 18.67.0.19, ... Connecting to dainesanalytics.com (dainesanalytics.com)|18.67.0.61|:443... connected. HTTP request sent, awaiting response... 200 OK Length: 2130757290 (2.0G) [application/zip] Saving to: ‘archive.zip’ archive.zip 100%[===================>] 1.98G 38.8MB/s in 44s 2022-04-07 17:22:20 (45.8 MB/s) - ‘archive.zip’ saved [2130757290/2130757290]
zip_ref = zipfile.ZipFile(TRAIN_DATASET, 'r')
zip_ref.extractall(STAGING_DIR)
zip_ref.close()
CLASS_LABELS = os.listdir(TRAIN_DIR)
print(CLASS_LABELS)
['corn', 'chilli pepper', 'ginger', 'carrot', 'sweetcorn', 'turnip', 'onion', 'beetroot', 'peas', 'paprika', 'raddish', 'orange', 'cabbage', 'banana', 'jalepeno', 'watermelon', 'tomato', 'lemon', 'pomegranate', 'grapes', 'sweetpotato', 'bell pepper', 'kiwi', 'pineapple', 'cucumber', 'eggplant', 'garlic', 'capsicum', 'spinach', 'cauliflower', 'soy beans', 'potato', 'mango', 'pear', 'lettuce', 'apple']
# Brief listing of training image files for each class
for c_label in CLASS_LABELS:
training_class_dir = os.path.join(TRAIN_DIR, c_label)
training_class_files = os.listdir(training_class_dir)
print('Number of training images for', c_label, ':', len(os.listdir(training_class_dir)))
print('Training samples for', c_label, ':', training_class_files[:5],'\n')
Number of training images for corn : 87 Training samples for corn : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for chilli pepper : 87 Training samples for chilli pepper : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_29.jpg', 'Image_73.jpg'] Number of training images for ginger : 68 Training samples for ginger : ['Image_54.jpg', 'Image_73.jpg', 'Image_28.jpg', 'Image_8.jpg', 'Image_6.jpg'] Number of training images for carrot : 82 Training samples for carrot : ['Image_23.jpg', 'Image_54.jpg', 'Image_29.jpg', 'Image_28.jpg', 'Image_94.jpg'] Number of training images for sweetcorn : 91 Training samples for sweetcorn : ['Image_23.jpg', 'Image_97.jpg', 'Image_55.png', 'Image_64.png', 'Image_45.jpg'] Number of training images for turnip : 98 Training samples for turnip : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for onion : 94 Training samples for onion : ['Image_23.jpg', 'Image_97.jpg', 'Image_37.png', 'Image_45.jpg', 'Image_54.jpg'] Number of training images for beetroot : 88 Training samples for beetroot : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_29.jpg', 'Image_28.jpg'] Number of training images for peas : 100 Training samples for peas : ['Image_23.jpg', 'Image_37.png', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for paprika : 83 Training samples for paprika : ['Image_97.jpg', 'Image_45.jpg', 'Image_29.jpg', 'Image_73.jpg', 'Image_28.jpg'] Number of training images for raddish : 81 Training samples for raddish : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_38.png', 'Image_29.jpg'] Number of training images for orange : 69 Training samples for orange : ['Image_23.jpg', 'Image_45.jpg', 'Image_29.jpg', 'Image_73.jpg', 'Image_28.jpg'] Number of training images for cabbage : 92 Training samples for cabbage : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_49.JPG', 'Image_54.jpg'] Number of training images for banana : 75 Training samples for banana : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_73.jpg'] Number of training images for jalepeno : 88 Training samples for jalepeno : ['Image_23.jpg', 'Image_70.png', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for watermelon : 84 Training samples for watermelon : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_29.jpg', 'Image_73.jpg'] Number of training images for tomato : 92 Training samples for tomato : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for lemon : 82 Training samples for lemon : ['Image_23.jpg', 'Image_97.jpg', 'Image_37.png', 'Image_64.png', 'Image_54.jpg'] Number of training images for pomegranate : 79 Training samples for pomegranate : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for grapes : 100 Training samples for grapes : ['Image_23.jpg', 'Image_97.jpg', 'Image_49.JPG', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for sweetpotato : 69 Training samples for sweetpotato : ['Image_23.jpg', 'Image_97.jpg', 'Image_54.jpg', 'Image_29.jpg', 'Image_73.jpg'] Number of training images for bell pepper : 90 Training samples for bell pepper : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for kiwi : 88 Training samples for kiwi : ['Image_23.jpg', 'Image_97.jpg', 'Image_37.png', 'Image_64.png', 'Image_54.jpg'] Number of training images for pineapple : 99 Training samples for pineapple : ['Image_23.jpg', 'Image_97.jpg', 'Image_54.jpg', 'Image_73.jpg', 'Image_28.jpg'] Number of training images for cucumber : 94 Training samples for cucumber : ['Image_23.jpg', 'Image_97.jpg', 'Image_55.png', 'Image_45.jpg', 'Image_13.JPG'] Number of training images for eggplant : 84 Training samples for eggplant : ['Image_97.jpg', 'Image_45.jpg', 'Image_38.png', 'Image_29.jpg', 'Image_73.jpg'] Number of training images for garlic : 92 Training samples for garlic : ['Image_23.jpg', 'Image_97.jpg', 'Image_54.jpg', 'Image_29.jpg', 'Image_28.jpg'] Number of training images for capsicum : 89 Training samples for capsicum : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for spinach : 97 Training samples for spinach : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for cauliflower : 79 Training samples for cauliflower : ['Image_23.jpg', 'Image_97.jpg', 'Image_29.jpg', 'Image_73.jpg', 'Image_34.JPG'] Number of training images for soy beans : 97 Training samples for soy beans : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for potato : 77 Training samples for potato : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_29.jpg'] Number of training images for mango : 86 Training samples for mango : ['Image_97.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_73.jpg', 'Image_28.jpg'] Number of training images for pear : 89 Training samples for pear : ['Image_23.jpg', 'Image_97.jpg', 'Image_45.jpg', 'Image_38.png', 'Image_54.jpg'] Number of training images for lettuce : 97 Training samples for lettuce : ['Image_97.jpg', 'Image_23.jpeg', 'Image_70.png', 'Image_45.jpg', 'Image_54.jpg'] Number of training images for apple : 68 Training samples for apple : ['Image_23.jpg', 'Image_45.jpg', 'Image_54.jpg', 'Image_71.png', 'Image_28.jpg']
# Brief listing of test image files for each class
for c_label in CLASS_LABELS:
test_class_dir = os.path.join(VALID_DIR, c_label)
test_class_files = os.listdir(test_class_dir)
print('Number of test images for', c_label, ':', len(os.listdir(test_class_dir)))
print('Training samples for', c_label, ':')
print(test_class_files[:5],'\n')
Number of test images for corn : 10 Training samples for corn : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for chilli pepper : 9 Training samples for chilli pepper : ['Image_8.jpg', 'Image_2.png', 'Image_4.jpg', 'Image_5.png', 'Image_1.jpg'] Number of test images for ginger : 10 Training samples for ginger : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for carrot : 9 Training samples for carrot : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.png', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for sweetcorn : 10 Training samples for sweetcorn : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for turnip : 10 Training samples for turnip : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for onion : 10 Training samples for onion : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_7.png'] Number of test images for beetroot : 10 Training samples for beetroot : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for peas : 10 Training samples for peas : ['Image_8.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg', 'Image_3.jpg'] Number of test images for paprika : 10 Training samples for paprika : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for raddish : 9 Training samples for raddish : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_5.png', 'Image_2.jpg'] Number of test images for orange : 9 Training samples for orange : ['Image_6.jpg', 'Image_10.png', 'Image_4.jpg', 'Image_2.jpg', 'Image_3.jpg'] Number of test images for cabbage : 10 Training samples for cabbage : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for banana : 9 Training samples for banana : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for jalepeno : 9 Training samples for jalepeno : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_3.jpg'] Number of test images for watermelon : 10 Training samples for watermelon : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for tomato : 10 Training samples for tomato : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for lemon : 10 Training samples for lemon : ['Image_8.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_9.png', 'Image_3.jpg'] Number of test images for pomegranate : 10 Training samples for pomegranate : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for grapes : 9 Training samples for grapes : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for sweetpotato : 10 Training samples for sweetpotato : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for bell pepper : 9 Training samples for bell pepper : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for kiwi : 10 Training samples for kiwi : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for pineapple : 10 Training samples for pineapple : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for cucumber : 10 Training samples for cucumber : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for eggplant : 10 Training samples for eggplant : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for garlic : 10 Training samples for garlic : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for capsicum : 10 Training samples for capsicum : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_3.JPG'] Number of test images for spinach : 10 Training samples for spinach : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for cauliflower : 10 Training samples for cauliflower : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for soy beans : 10 Training samples for soy beans : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for potato : 10 Training samples for potato : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for mango : 10 Training samples for mango : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for pear : 10 Training samples for pear : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for lettuce : 9 Training samples for lettuce : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for apple : 10 Training samples for apple : ['Image_8.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg', 'Image_3.jpg']
# Plot some training images from the dataset
nrows = len(CLASS_LABELS)
ncols = 4
training_examples = []
example_labels = []
fig = plt.gcf()
fig.set_size_inches(ncols * 4, nrows * 3)
for c_label in CLASS_LABELS:
training_class_dir = os.path.join(TRAIN_DIR, c_label)
training_class_files = os.listdir(training_class_dir)
for j in range(ncols):
training_examples.append(training_class_dir + '/' + training_class_files[j])
example_labels.append(c_label)
# print(training_examples)
# print(example_labels)
for i, img_path in enumerate(training_examples):
# Set up subplot; subplot indices start at 1
sp = plt.subplot(nrows, ncols, i+1)
sp.text(0, 0, example_labels[i])
# sp.axis('Off')
img = mpimg.imread(img_path)
plt.imshow(img)
plt.show()
datagen_kwargs = dict(rescale=1./255)
training_datagen = ImageDataGenerator(**datagen_kwargs)
validation_datagen = ImageDataGenerator(**datagen_kwargs)
dataflow_kwargs = dict(class_mode="categorical")
do_data_augmentation = True
if do_data_augmentation:
training_datagen = ImageDataGenerator(rotation_range=45,
horizontal_flip=True,
vertical_flip=True,
**datagen_kwargs)
print('Loading and pre-processing the training images...')
training_generator = training_datagen.flow_from_directory(directory=TRAIN_DIR,
target_size=TARGET_IMAGE_SIZE,
batch_size=BATCH_SIZE,
shuffle=True,
seed=RNG_SEED,
**dataflow_kwargs)
print('Number of training image batches per epoch of modeling:', len(training_generator))
print('Loading and pre-processing the validation images...')
validation_generator = validation_datagen.flow_from_directory(directory=VALID_DIR,
target_size=TARGET_IMAGE_SIZE,
batch_size=BATCH_SIZE,
shuffle=False,
**dataflow_kwargs)
print('Number of validation image batches per epoch of modeling:', len(validation_generator))
Loading and pre-processing the training images... Found 3115 images belonging to 36 classes. Number of training image batches per epoch of modeling: 195 Loading and pre-processing the validation images... Found 351 images belonging to 36 classes. Number of validation image batches per epoch of modeling: 22
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 2 - Load and Prepare Images completed on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 3 - Define and Train Models has begun on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
# Define the function for plotting training results for comparison
def plot_metrics(history):
fig, axs = plt.subplots(1, 2, figsize=(24, 15))
metrics = [TRAIN_LOSS, TRAIN_METRIC]
for n, metric in enumerate(metrics):
name = metric.replace("_"," ").capitalize()
plt.subplot(2,2,n+1)
plt.plot(history.epoch, history.history[metric], color='blue', label='Train')
plt.plot(history.epoch, history.history['val_'+metric], color='red', linestyle="--", label='Val')
plt.xlabel('Epoch')
plt.ylabel(name)
if metric == TRAIN_LOSS:
plt.ylim([0, plt.ylim()[1]])
else:
plt.ylim([0, 1])
plt.legend()
# Define the baseline model for benchmarking
def create_nn_model(input_param=INPUT_IMAGE_SHAPE, output_param=NUM_CLASSES, dense_nodes=2048,
classifier_activation=CLASSIFIER_ACTIVATION, loss_param=DEFAULT_LOSS,
opt_param=DEFAULT_OPTIMIZER, metrics_param=DEFAULT_METRICS):
base_model = keras.applications.resnet_v2.ResNet50V2(include_top=False, weights='imagenet', input_shape=input_param)
nn_model = keras.models.Sequential()
nn_model.add(base_model)
nn_model.add(keras.layers.Flatten())
nn_model.add(keras.layers.Dense(dense_nodes, activation='relu')),
nn_model.add(keras.layers.Dense(output_param, activation=classifier_activation))
nn_model.compile(loss=loss_param, optimizer=opt_param, metrics=metrics_param)
return nn_model
# Initialize the neural network model and get the training results for plotting graph
start_time_module = datetime.now()
tf.keras.utils.set_random_seed(RNG_SEED)
baseline_model = create_nn_model()
baseline_model_history = baseline_model.fit(training_generator,
epochs=MAX_EPOCHS,
validation_data=validation_generator,
verbose=1)
print('Total time for model fitting:', (datetime.now() - start_time_module))
Downloading data from https://storage.googleapis.com/tensorflow/keras-applications/resnet/resnet50v2_weights_tf_dim_ordering_tf_kernels_notop.h5 94674944/94668760 [==============================] - 0s 0us/step 94683136/94668760 [==============================] - 0s 0us/step Epoch 1/20 11/195 [>.............................] - ETA: 1:46 - loss: 6.5909 - accuracy: 0.1462
/usr/local/lib/python3.7/dist-packages/PIL/TiffImagePlugin.py:788: UserWarning: Corrupt EXIF data. Expecting to read 4 bytes but only got 0. warnings.warn(str(msg))
29/195 [===>..........................] - ETA: 1:50 - loss: 4.7171 - accuracy: 0.2179
/usr/local/lib/python3.7/dist-packages/PIL/Image.py:960: UserWarning: Palette images with Transparency expressed in bytes should be converted to RGBA images "Palette images with Transparency expressed in bytes should be "
195/195 [==============================] - 179s 839ms/step - loss: 2.1518 - accuracy: 0.4896 - val_loss: 0.8817 - val_accuracy: 0.7635 Epoch 2/20 195/195 [==============================] - 161s 824ms/step - loss: 1.0290 - accuracy: 0.6979 - val_loss: 0.5041 - val_accuracy: 0.8632 Epoch 3/20 195/195 [==============================] - 161s 827ms/step - loss: 0.7786 - accuracy: 0.7634 - val_loss: 0.3590 - val_accuracy: 0.8974 Epoch 4/20 195/195 [==============================] - 161s 826ms/step - loss: 0.6450 - accuracy: 0.7994 - val_loss: 0.3978 - val_accuracy: 0.8860 Epoch 5/20 195/195 [==============================] - 161s 827ms/step - loss: 0.5468 - accuracy: 0.8273 - val_loss: 0.3263 - val_accuracy: 0.9145 Epoch 6/20 195/195 [==============================] - 161s 826ms/step - loss: 0.4774 - accuracy: 0.8517 - val_loss: 0.3522 - val_accuracy: 0.9031 Epoch 7/20 195/195 [==============================] - 161s 827ms/step - loss: 0.4235 - accuracy: 0.8687 - val_loss: 0.3292 - val_accuracy: 0.9316 Epoch 8/20 195/195 [==============================] - 161s 828ms/step - loss: 0.4045 - accuracy: 0.8671 - val_loss: 0.3205 - val_accuracy: 0.8889 Epoch 9/20 195/195 [==============================] - 161s 820ms/step - loss: 0.3473 - accuracy: 0.8915 - val_loss: 0.2293 - val_accuracy: 0.9316 Epoch 10/20 195/195 [==============================] - 161s 828ms/step - loss: 0.3331 - accuracy: 0.8934 - val_loss: 0.3612 - val_accuracy: 0.9174 Epoch 11/20 195/195 [==============================] - 160s 821ms/step - loss: 0.3183 - accuracy: 0.8915 - val_loss: 0.2614 - val_accuracy: 0.9345 Epoch 12/20 195/195 [==============================] - 161s 824ms/step - loss: 0.3149 - accuracy: 0.9024 - val_loss: 0.3728 - val_accuracy: 0.9174 Epoch 13/20 195/195 [==============================] - 160s 824ms/step - loss: 0.2831 - accuracy: 0.9108 - val_loss: 0.2692 - val_accuracy: 0.9288 Epoch 14/20 195/195 [==============================] - 161s 824ms/step - loss: 0.2712 - accuracy: 0.9130 - val_loss: 0.3428 - val_accuracy: 0.9174 Epoch 15/20 195/195 [==============================] - 161s 824ms/step - loss: 0.2664 - accuracy: 0.9149 - val_loss: 0.3174 - val_accuracy: 0.9174 Epoch 16/20 195/195 [==============================] - 161s 825ms/step - loss: 0.2514 - accuracy: 0.9194 - val_loss: 0.2835 - val_accuracy: 0.9402 Epoch 17/20 195/195 [==============================] - 161s 825ms/step - loss: 0.2396 - accuracy: 0.9210 - val_loss: 0.4093 - val_accuracy: 0.9259 Epoch 18/20 195/195 [==============================] - 161s 823ms/step - loss: 0.2113 - accuracy: 0.9361 - val_loss: 0.5265 - val_accuracy: 0.8889 Epoch 19/20 195/195 [==============================] - 161s 826ms/step - loss: 0.2553 - accuracy: 0.9165 - val_loss: 0.3219 - val_accuracy: 0.9288 Epoch 20/20 195/195 [==============================] - 161s 825ms/step - loss: 0.2486 - accuracy: 0.9242 - val_loss: 0.2902 - val_accuracy: 0.9174 Total time for model fitting: 0:54:01.459585
baseline_model.summary()
Model: "sequential"
_________________________________________________________________
Layer (type) Output Shape Param #
=================================================================
resnet50v2 (Functional) (None, 7, 7, 2048) 23564800
flatten (Flatten) (None, 100352) 0
dense (Dense) (None, 2048) 205522944
dense_1 (Dense) (None, 36) 73764
=================================================================
Total params: 229,161,508
Trainable params: 229,116,068
Non-trainable params: 45,440
_________________________________________________________________
plot_metrics(baseline_model_history)
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 3 - Define and Train Models completed on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 4 - Tune and Optimize Models has begun on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
# Initialize the neural network model and get the training results for plotting graph
start_time_module = datetime.now()
learning_rate_reduction = ReduceLROnPlateau(monitor='val_accuracy', patience=3, verbose=1, factor=0.5, min_lr=0.0000125)
TUNE_OPTIMIZER = tf.keras.optimizers.Adam(learning_rate=0.00005)
tf.keras.utils.set_random_seed(RNG_SEED)
tune_model = create_nn_model(opt_param=TUNE_OPTIMIZER)
tune_model_history = tune_model.fit(training_generator,
epochs=MAX_EPOCHS,
validation_data=validation_generator,
callbacks=[learning_rate_reduction],
verbose=1)
print('Total time for model fitting:', (datetime.now() - start_time_module))
/usr/local/lib/python3.7/dist-packages/PIL/Image.py:960: UserWarning: Palette images with Transparency expressed in bytes should be converted to RGBA images "Palette images with Transparency expressed in bytes should be "
Epoch 1/20 36/195 [====>.........................] - ETA: 1:42 - loss: 3.6619 - accuracy: 0.2802
/usr/local/lib/python3.7/dist-packages/PIL/TiffImagePlugin.py:788: UserWarning: Corrupt EXIF data. Expecting to read 4 bytes but only got 0. warnings.warn(str(msg))
195/195 [==============================] - 167s 831ms/step - loss: 2.1483 - accuracy: 0.4831 - val_loss: 0.5231 - val_accuracy: 0.8462 - lr: 5.0000e-05 Epoch 2/20 195/195 [==============================] - 161s 829ms/step - loss: 0.9887 - accuracy: 0.7104 - val_loss: 0.3836 - val_accuracy: 0.8946 - lr: 5.0000e-05 Epoch 3/20 195/195 [==============================] - 161s 829ms/step - loss: 0.7144 - accuracy: 0.7762 - val_loss: 0.2935 - val_accuracy: 0.9003 - lr: 5.0000e-05 Epoch 4/20 195/195 [==============================] - 161s 826ms/step - loss: 0.5795 - accuracy: 0.8292 - val_loss: 0.2178 - val_accuracy: 0.9231 - lr: 5.0000e-05 Epoch 5/20 195/195 [==============================] - 161s 825ms/step - loss: 0.4504 - accuracy: 0.8530 - val_loss: 0.2781 - val_accuracy: 0.9345 - lr: 5.0000e-05 Epoch 6/20 195/195 [==============================] - 161s 824ms/step - loss: 0.3884 - accuracy: 0.8809 - val_loss: 0.2253 - val_accuracy: 0.9487 - lr: 5.0000e-05 Epoch 7/20 195/195 [==============================] - 162s 826ms/step - loss: 0.3611 - accuracy: 0.8770 - val_loss: 0.2963 - val_accuracy: 0.9402 - lr: 5.0000e-05 Epoch 8/20 195/195 [==============================] - 161s 828ms/step - loss: 0.3313 - accuracy: 0.8963 - val_loss: 0.1993 - val_accuracy: 0.9630 - lr: 5.0000e-05 Epoch 9/20 195/195 [==============================] - 163s 836ms/step - loss: 0.2668 - accuracy: 0.9130 - val_loss: 0.2308 - val_accuracy: 0.9487 - lr: 5.0000e-05 Epoch 10/20 195/195 [==============================] - 162s 828ms/step - loss: 0.2427 - accuracy: 0.9291 - val_loss: 0.1925 - val_accuracy: 0.9544 - lr: 5.0000e-05 Epoch 11/20 195/195 [==============================] - ETA: 0s - loss: 0.2225 - accuracy: 0.9297 Epoch 11: ReduceLROnPlateau reducing learning rate to 2.499999936844688e-05. 195/195 [==============================] - 161s 827ms/step - loss: 0.2225 - accuracy: 0.9297 - val_loss: 0.2286 - val_accuracy: 0.9630 - lr: 5.0000e-05 Epoch 12/20 195/195 [==============================] - 161s 827ms/step - loss: 0.1605 - accuracy: 0.9480 - val_loss: 0.2042 - val_accuracy: 0.9601 - lr: 2.5000e-05 Epoch 13/20 195/195 [==============================] - 161s 826ms/step - loss: 0.1328 - accuracy: 0.9563 - val_loss: 0.1966 - val_accuracy: 0.9573 - lr: 2.5000e-05 Epoch 14/20 195/195 [==============================] - ETA: 0s - loss: 0.1369 - accuracy: 0.9567 Epoch 14: ReduceLROnPlateau reducing learning rate to 1.25e-05. 195/195 [==============================] - 162s 831ms/step - loss: 0.1369 - accuracy: 0.9567 - val_loss: 0.1851 - val_accuracy: 0.9630 - lr: 2.5000e-05 Epoch 15/20 195/195 [==============================] - 162s 834ms/step - loss: 0.1031 - accuracy: 0.9660 - val_loss: 0.1758 - val_accuracy: 0.9658 - lr: 1.2500e-05 Epoch 16/20 195/195 [==============================] - 163s 836ms/step - loss: 0.0875 - accuracy: 0.9717 - val_loss: 0.1717 - val_accuracy: 0.9715 - lr: 1.2500e-05 Epoch 17/20 195/195 [==============================] - 164s 840ms/step - loss: 0.0796 - accuracy: 0.9769 - val_loss: 0.1805 - val_accuracy: 0.9715 - lr: 1.2500e-05 Epoch 18/20 195/195 [==============================] - 165s 847ms/step - loss: 0.0681 - accuracy: 0.9817 - val_loss: 0.2056 - val_accuracy: 0.9630 - lr: 1.2500e-05 Epoch 19/20 195/195 [==============================] - 165s 842ms/step - loss: 0.0669 - accuracy: 0.9769 - val_loss: 0.1855 - val_accuracy: 0.9658 - lr: 1.2500e-05 Epoch 20/20 195/195 [==============================] - 165s 846ms/step - loss: 0.0543 - accuracy: 0.9843 - val_loss: 0.1857 - val_accuracy: 0.9715 - lr: 1.2500e-05 Total time for model fitting: 0:54:12.758535
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 4 - Tune and Optimize Models completed on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 5 - Finalize Model and Make Predictions has begun on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
FINAL_OPTIMIZER = tf.keras.optimizers.Adam(learning_rate=0.0000125)
FINAL_EPOCHS = MAX_EPOCHS
tf.keras.utils.set_random_seed(RNG_SEED)
final_model = create_nn_model(opt_param=FINAL_OPTIMIZER)
final_model.fit(training_generator, epochs=FINAL_EPOCHS, verbose=1)
final_model.summary()
Epoch 1/20 19/195 [=>............................] - ETA: 2:19 - loss: 4.2679 - accuracy: 0.1037
/usr/local/lib/python3.7/dist-packages/PIL/TiffImagePlugin.py:788: UserWarning: Corrupt EXIF data. Expecting to read 4 bytes but only got 0. warnings.warn(str(msg))
87/195 [============>.................] - ETA: 1:22 - loss: 3.0313 - accuracy: 0.2819
/usr/local/lib/python3.7/dist-packages/PIL/Image.py:960: UserWarning: Palette images with Transparency expressed in bytes should be converted to RGBA images "Palette images with Transparency expressed in bytes should be "
195/195 [==============================] - 151s 750ms/step - loss: 2.3518 - accuracy: 0.4100
Epoch 2/20
195/195 [==============================] - 146s 749ms/step - loss: 1.1893 - accuracy: 0.6581
Epoch 3/20
195/195 [==============================] - 146s 748ms/step - loss: 0.9199 - accuracy: 0.7339
Epoch 4/20
195/195 [==============================] - 146s 748ms/step - loss: 0.7099 - accuracy: 0.7875
Epoch 5/20
195/195 [==============================] - 146s 746ms/step - loss: 0.6218 - accuracy: 0.8151
Epoch 6/20
195/195 [==============================] - 146s 748ms/step - loss: 0.4938 - accuracy: 0.8530
Epoch 7/20
195/195 [==============================] - 146s 747ms/step - loss: 0.4291 - accuracy: 0.8716
Epoch 8/20
195/195 [==============================] - 145s 747ms/step - loss: 0.3717 - accuracy: 0.8835
Epoch 9/20
195/195 [==============================] - 146s 749ms/step - loss: 0.3303 - accuracy: 0.8979
Epoch 10/20
195/195 [==============================] - 146s 747ms/step - loss: 0.3109 - accuracy: 0.9047
Epoch 11/20
195/195 [==============================] - 144s 738ms/step - loss: 0.2651 - accuracy: 0.9136
Epoch 12/20
195/195 [==============================] - 143s 731ms/step - loss: 0.2602 - accuracy: 0.9185
Epoch 13/20
195/195 [==============================] - 142s 730ms/step - loss: 0.2216 - accuracy: 0.9287
Epoch 14/20
195/195 [==============================] - 143s 735ms/step - loss: 0.2313 - accuracy: 0.9300
Epoch 15/20
195/195 [==============================] - 143s 732ms/step - loss: 0.1862 - accuracy: 0.9406
Epoch 16/20
195/195 [==============================] - 143s 730ms/step - loss: 0.1898 - accuracy: 0.9406
Epoch 17/20
195/195 [==============================] - 143s 728ms/step - loss: 0.1800 - accuracy: 0.9435
Epoch 18/20
195/195 [==============================] - 143s 733ms/step - loss: 0.1784 - accuracy: 0.9413
Epoch 19/20
195/195 [==============================] - 144s 739ms/step - loss: 0.1552 - accuracy: 0.9518
Epoch 20/20
195/195 [==============================] - 143s 735ms/step - loss: 0.1382 - accuracy: 0.9563
Model: "sequential_2"
_________________________________________________________________
Layer (type) Output Shape Param #
=================================================================
resnet50v2 (Functional) (None, 7, 7, 2048) 23564800
flatten_2 (Flatten) (None, 100352) 0
dense_4 (Dense) (None, 2048) 205522944
dense_5 (Dense) (None, 36) 73764
=================================================================
Total params: 229,161,508
Trainable params: 229,116,068
Non-trainable params: 45,440
_________________________________________________________________
# Brief listing of test image files for each class
for c_label in CLASS_LABELS:
test_class_dir = os.path.join(TEST_DIR, c_label)
test_class_files = os.listdir(test_class_dir)
print('Number of test images for', c_label, ':', len(os.listdir(test_class_dir)))
print('Training samples for', c_label, ':')
print(test_class_files[:5],'\n')
Number of test images for corn : 10 Training samples for corn : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for chilli pepper : 10 Training samples for chilli pepper : ['Image_8.jpg', 'Image_6.jpeg', 'Image_2.png', 'Image_4.jpg', 'Image_5.png'] Number of test images for ginger : 10 Training samples for ginger : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for carrot : 10 Training samples for carrot : ['Image_8.jpg', 'Image_9.jpeg', 'Image_6.jpg', 'Image_4.png', 'Image_2.jpg'] Number of test images for sweetcorn : 10 Training samples for sweetcorn : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for turnip : 10 Training samples for turnip : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for onion : 10 Training samples for onion : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_7.png'] Number of test images for beetroot : 10 Training samples for beetroot : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for peas : 10 Training samples for peas : ['Image_8.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg', 'Image_3.jpg'] Number of test images for paprika : 10 Training samples for paprika : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for raddish : 10 Training samples for raddish : ['Image_8.jpg', 'Image_9.jpeg', 'Image_6.jpg', 'Image_4.jpg', 'Image_5.png'] Number of test images for orange : 10 Training samples for orange : ['Image_6.jpg', 'Image_10.png', 'Image_4.jpg', 'Image_2.jpg', 'Image_8.jpeg'] Number of test images for cabbage : 10 Training samples for cabbage : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for banana : 9 Training samples for banana : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for jalepeno : 10 Training samples for jalepeno : ['Image_1.jpeg', 'Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg'] Number of test images for watermelon : 10 Training samples for watermelon : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for tomato : 10 Training samples for tomato : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for lemon : 10 Training samples for lemon : ['Image_8.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_9.png', 'Image_3.jpg'] Number of test images for pomegranate : 10 Training samples for pomegranate : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for grapes : 10 Training samples for grapes : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_5.jpeg'] Number of test images for sweetpotato : 10 Training samples for sweetpotato : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for bell pepper : 10 Training samples for bell pepper : ['Image_8.jpg', 'Image_3.jpeg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg'] Number of test images for kiwi : 10 Training samples for kiwi : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for pineapple : 10 Training samples for pineapple : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for cucumber : 10 Training samples for cucumber : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for eggplant : 10 Training samples for eggplant : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for garlic : 10 Training samples for garlic : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for capsicum : 10 Training samples for capsicum : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_3.JPG'] Number of test images for spinach : 10 Training samples for spinach : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for cauliflower : 10 Training samples for cauliflower : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for soy beans : 10 Training samples for soy beans : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for potato : 10 Training samples for potato : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for mango : 10 Training samples for mango : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for pear : 10 Training samples for pear : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg'] Number of test images for lettuce : 10 Training samples for lettuce : ['Image_8.jpg', 'Image_6.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_5.jpeg'] Number of test images for apple : 10 Training samples for apple : ['Image_8.jpg', 'Image_4.jpg', 'Image_2.jpg', 'Image_1.jpg', 'Image_3.jpg']
datagen_kwargs = dict(rescale=1./255)
test_datagen = ImageDataGenerator(**datagen_kwargs)
dataflow_kwargs = dict(class_mode="categorical")
print('Loading and pre-processing the test images...')
test_generator = validation_datagen.flow_from_directory(directory=TEST_DIR,
target_size=TARGET_IMAGE_SIZE,
batch_size=BATCH_SIZE,
shuffle=False,
**dataflow_kwargs)
print('Number of test image batches per epoch of modeling:', len(test_generator))
Loading and pre-processing the test images... Found 359 images belonging to 36 classes. Number of test image batches per epoch of modeling: 23
# Print the labels used for the modeling
print(test_generator.class_indices)
{'apple': 0, 'banana': 1, 'beetroot': 2, 'bell pepper': 3, 'cabbage': 4, 'capsicum': 5, 'carrot': 6, 'cauliflower': 7, 'chilli pepper': 8, 'corn': 9, 'cucumber': 10, 'eggplant': 11, 'garlic': 12, 'ginger': 13, 'grapes': 14, 'jalepeno': 15, 'kiwi': 16, 'lemon': 17, 'lettuce': 18, 'mango': 19, 'onion': 20, 'orange': 21, 'paprika': 22, 'pear': 23, 'peas': 24, 'pineapple': 25, 'pomegranate': 26, 'potato': 27, 'raddish': 28, 'soy beans': 29, 'spinach': 30, 'sweetcorn': 31, 'sweetpotato': 32, 'tomato': 33, 'turnip': 34, 'watermelon': 35}
final_model.evaluate(test_generator, verbose=1)
13/23 [===============>..............] - ETA: 8s - loss: 0.2094 - accuracy: 0.9471
/usr/local/lib/python3.7/dist-packages/PIL/TiffImagePlugin.py:788: UserWarning: Corrupt EXIF data. Expecting to read 4 bytes but only got 0. warnings.warn(str(msg))
23/23 [==============================] - 19s 791ms/step - loss: 0.2128 - accuracy: 0.9554
[0.21282808482646942, 0.9554317593574524]
test_pred = final_model.predict(test_generator)
test_predictions = np.argmax(test_pred, axis=-1)
test_original = test_generator.labels
print('Accuracy Score:', accuracy_score(test_original, test_predictions))
print(confusion_matrix(test_original, test_predictions))
print(classification_report(test_original, test_predictions))
/usr/local/lib/python3.7/dist-packages/PIL/TiffImagePlugin.py:788: UserWarning: Corrupt EXIF data. Expecting to read 4 bytes but only got 0. warnings.warn(str(msg))
Accuracy Score: 0.9554317548746518
[[ 8 0 0 ... 0 0 0]
[ 0 7 0 ... 0 0 0]
[ 0 0 10 ... 0 0 0]
...
[ 0 0 0 ... 10 0 0]
[ 0 0 0 ... 0 10 0]
[ 0 0 0 ... 0 0 10]]
precision recall f1-score support
0 0.89 0.80 0.84 10
1 1.00 0.78 0.88 9
2 1.00 1.00 1.00 10
3 0.77 1.00 0.87 10
4 1.00 1.00 1.00 10
5 1.00 0.70 0.82 10
6 1.00 0.90 0.95 10
7 1.00 1.00 1.00 10
8 1.00 1.00 1.00 10
9 0.89 0.80 0.84 10
10 1.00 1.00 1.00 10
11 1.00 1.00 1.00 10
12 1.00 0.90 0.95 10
13 1.00 1.00 1.00 10
14 1.00 1.00 1.00 10
15 0.91 1.00 0.95 10
16 1.00 1.00 1.00 10
17 1.00 1.00 1.00 10
18 1.00 1.00 1.00 10
19 1.00 1.00 1.00 10
20 0.91 1.00 0.95 10
21 0.71 1.00 0.83 10
22 0.91 1.00 0.95 10
23 1.00 1.00 1.00 10
24 1.00 0.90 0.95 10
25 1.00 1.00 1.00 10
26 1.00 1.00 1.00 10
27 0.89 0.80 0.84 10
28 1.00 1.00 1.00 10
29 0.91 1.00 0.95 10
30 1.00 1.00 1.00 10
31 0.82 0.90 0.86 10
32 1.00 0.90 0.95 10
33 1.00 1.00 1.00 10
34 1.00 1.00 1.00 10
35 1.00 1.00 1.00 10
accuracy 0.96 359
macro avg 0.96 0.95 0.96 359
weighted avg 0.96 0.96 0.96 359
if NOTIFY_STATUS: status_notify('(TensorFlow Multi-Class) Task 5 - Finalize Model and Make Predictions completed on ' + datetime.now().strftime('%A %B %d, %Y %I:%M:%S %p'))
print ('Total time for the script:',(datetime.now() - START_TIME_SCRIPT))
Total time for the script: 2:38:54.931381